Apple Inc.
AUTOMATED INPUT-DATA MONITORING TO DYNAMICALLY ADAPT MACHINE-LEARNING TECHNIQUES
Last updated:
Abstract:
Systems and methods are disclosed for triggering an update to a machine-learning model upon detecting that a distribution of particular (e.g., recently collected) input data set is sufficiently different from a distribution training input data set used to train the model. The distributions may be determined to be sufficiently different when a classifier can identify to which distribution individual data elements belong (e.g., to at least a predetermined degree). An update to the machine-learning model can include morphing weights used by the model and/or retraining the model.
Status:
Application
Type:
Utility
Filling date:
15 May 2020
Issue date:
22 Jul 2021